基于高斯混合模型的贝叶斯信号检测器设计

V. Jilkov, Jaipal R. Katkuri, Hari K. Nandiraju
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引用次数: 3

摘要

研究了未知参数信号的贝叶斯检测器设计问题,当参数的先验分布是非高斯分布时,噪声也可能是非高斯分布。推导了参数先验分布的高斯混合模型的最优检测器。提出了一种利用混合高斯近似设计未知参数任意先验分布的次优贝叶斯检测器的一般方法。通过一个瑞利先验分布的算例对该方法进行了说明,并通过蒙特卡罗仿真对所设计的检测器的性能进行了评价。
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Design of Bayesian signal detectors using Gaussian-mixture models
Addressed is the problem of Bayesian detector design for a signal with unknown parameters when the prior distribution of the parameters is non-Gaussian, and, possibly, the noise is non-Gaussian. An optimal detector for a Gaussian-mixture model of the parameter prior distribution is derived. A general technique for design of suboptimal Bayesian detectors with arbitrary prior distributions of the unknown parameter by means of Gaussian-mixture approximations is proposed. The technique is illustrated over an example with Rayleigh prior distribution, and the performance of the designed detector is evaluated by Monte Carlo simulation.
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